Learning to Optimize: Training Deep Neural Networks for Interference Management.

IEEE Transactions on Signal Processing(2018)

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摘要
Numerical optimization has played a central role in addressing key signal processing (SP) problems. Highly effective methods have been developed for a large variety of SP applications such as communications, radar, filter design, and speech and image analytics, just to name a few. However, optimization algorithms often entail considerable complexity, which creates a serious gap between theoretical...
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关键词
Signal processing algorithms,Approximation algorithms,Interference,Optimization,Task analysis,Machine learning algorithms,Wireless communication
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